A general theory is provided delivering convergence of maximal cyclically monotone mappings containing the supports of coupling measures of sequences of pairs of possibly random probability measures on Euclidean space. The theory is based on the identification of such a mapping with a closed subset of a Cartesian product of Euclidean spaces and leveraging tools from random set theory. Weak convergence in the appropriate Fell space together with the maximal cyclical monotonicity then automatically yields local uniform convergence of the associated mappings. Viewing such mappings as optimal transport plans between probability measures with respect to the squared Euclidean distance as cost function yields consistency results for notions of multivariate ranks and quantiles based on optimal transport, notably the empirical center-outward distribution and quantile functions.
翻译:提供了一种一般性理论,使最大周期性单质谱绘制方法趋于一致,其中包括支持对极地空间可能随机概率测量的对相序列的组合测量方法,该理论的基础是将这种测绘方法与欧几里地空间的笛卡尔产物的封闭子集以及随机设定理论的杠杆工具加以识别。适当的瀑布空间与最大周期性单质谱的薄弱趋同,然后自动使相关绘图在当地实现统一。将这种测绘方法视为对平方极极远距离的概率测量方法之间的最佳运输计划,成本函数使基于最佳运输的多变体级和量值概念产生一致性结果,特别是实验性的中向外分布和四分函数。